We are facing memory issues while implementing scikit learn's DBSCAN for 0.7 million data points with 2 columns (latitude and longitude).

We also tried changing epsilon values to small numbers and reducing the number of minimum required points for cluster.

```
import pandas as pd, numpy as np, matplotlib.pyplot as plt, time
from sklearn.cluster import DBSCAN
from sklearn import metrics
from geopy.distance import great_circle
from shapely.geometry import MultiPoint
%matplotlib inline
kms_per_radian = 6371.0088
df = pd.read_csv('data/xxxxxxxxx.csv', encoding='utf-8')
// represent points consistently as (lat, lon).
coords = df.as_matrix(columns=['lat', 'lon'])
// define epsilon as 1.5 kilometers, converted to radians for use by haversine.
epsilon = 1.5 / kms_per_radian
db = DBSCAN(eps=epsilon, min_samples=1, algorithm='ball_tree', metric='haversine').fit(np.radians(coords))
```

Kernel killed automatically. Please suggest ways to optimize the code.